Bayesian Network Classification with Continuous Attributes: Getting the Best of Both Discretization and Parametric Fitting (1998)

by Nir Friedman , Moises Goldszmidt , Thomas J. Lee
Venue:In Proceedings of the International Conference on Machine Learning (ICML
Citations:28 - 2 self

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